Study Results
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Basic Information
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COMPLETED
NA
14 participants
INTERVENTIONAL
2021-01-01
2021-05-21
Brief Summary
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Detailed Description
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Conditions
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Study Design
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NA
SINGLE_GROUP
PREVENTION
NONE
Study Groups
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Internet wellness intervention for aging
Feasibility components will be evaluated with a 5-point Likert scale may include open ended items for more detailed feedback. Participants will be asked to visit NDSU at the beginning and end of the intervention, and at 1-month follow-up. After written informed consent, each participant will complete a descriptive questionnaire at the beginning of the intervention period, and a health-related questionnaire at the beginning and end of the intervention, and at follow-up that includes self-rated health, current smoking status, smoking history, alcohol use, morbid conditions, functional disability, and depression status. Standing height and waist circumference will be collected with a tape measure. Body weight and composition will be measured with the InBody 570. Anthropometric and body composition assessments will be collected pre, post, and follow up.
Internet Wellness Intervention for Aging
Internet technologies have emerged as a platform for performing wellness interventions that also have wide outreach. Previous studies that have used the internet for delivering health interventions have found that older adults valued this platform, used it for researching health information and social communications. Likewise, the effectiveness of delivering health-related information intended for behavior change through the internet is equal to that of print-based delivery, thereby lowering costs and expanding reach. Thus, the internet provides a unique platform for conducting interventions. The internet based wellness intervention will be a low cost method focused on older adults to help increase intrinsic motivation through autonomy, competence, and relatedness (Intrinsic Motivation) to help increase daily physical activity.
Interventions
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Internet Wellness Intervention for Aging
Internet technologies have emerged as a platform for performing wellness interventions that also have wide outreach. Previous studies that have used the internet for delivering health interventions have found that older adults valued this platform, used it for researching health information and social communications. Likewise, the effectiveness of delivering health-related information intended for behavior change through the internet is equal to that of print-based delivery, thereby lowering costs and expanding reach. Thus, the internet provides a unique platform for conducting interventions. The internet based wellness intervention will be a low cost method focused on older adults to help increase intrinsic motivation through autonomy, competence, and relatedness (Intrinsic Motivation) to help increase daily physical activity.
Eligibility Criteria
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Inclusion Criteria
Exclusion Criteria
65 Years
ALL
Yes
Sponsors
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North Dakota State University
OTHER
Responsible Party
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Ryan McGrath
Assistant Professor
Locations
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North Dakota State University Health, Nutrition, and Exercise Sciences
Fargo, North Dakota, United States
Countries
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References
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Provided Documents
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Document Type: Study Protocol and Statistical Analysis Plan
Related Links
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Projections of the Size and Composition of the US Population: 2014 to 2060
Obesity in Elderly
Web-based physical activity interventions for older adults: A review.
Statistical power analysis for the behavioral sciences.
United States Department of Health and Human Services
l. Assessing sleep using hip and wrist actigraphy
Other Identifiers
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NorthDakotaSU
Identifier Type: -
Identifier Source: org_study_id
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